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Washburn Lab
Michael Washburn, Ph.D.
Director of Proteomics Center
mpw@stowers.org
Postdoctoral Position in Transcriptional Proteomics Currently Available:
e-mail mpw@stowers.org for more information.

Postdoctoral Position in Computational Analysis of Protein Interaction Networks Currently Available: e-mail mpw@stowers.org for more information

Research Description

Quantitative Proteomic Analysis of Transcriptional Regulatory Complexes

      The goal of our research is to develop label free quantitative proteomic tools with a particular focus on applying these tools to the analysis of transcriptional regulatory complexes. On the technology side, we are focused on the further development of spectral counting as a quantitative proteomic tool. On the biological side, we are particularly interested in the discovery of novel protein protein interactions with well characterized transcriptional regulatory complexes, the proteomic based analysis of the dynamics of transcriptional regulatory complexes, and characterization of protein interaction networks. We are a highly interactive and interdisciplinary group, and we collaborate extensively with many researchers at the Stowers Institute.

Proteomic Technologies

MudPIT
     We utilize a method named Multidimensional Protein Identification Technology (MudPIT) to analyze the proteomes of organisms. MudPIT is a chromatography-based proteomic technique where a complex peptide mixture is prepared from a protein sample and loaded directly onto a triphasic microcapillary column packed with reversed phase, strong cation exchange, and reversed phase HPLC grade materials. Once the complex peptide mixture is loaded onto the triphasic microcapillary column, this column is placed directly in-line with a tandem mass spectrometer. The tandem mass spectrometry data generated from a MudPIT run is then analyzed to determine the protein content of the original sample. MudPIT has been proven to be an excellent tool for both qualitative and quantitative proteomic analyses.

Quantitative Proteomics
     The dynamic changes of a proteome or fractions of a proteome; i.e., organelles and protein complexes, can be analyzed via quantitative proteomic methods. We largely carry out label free quantitative proteomic analyses using spectral counting. In spectral counting, the total number of tandem mass spectra that match peptides to a particular protein is used to measure the abundance of proteins in a complex mixture. We have developed the normalized spectral abundance factor (NSAF) approach for using spectral counting in quantitative proteomics (Zybailov et al., 2006). This approach takes into account the sample-to-sample variation that is obtained when carrying out replicate analyses of a sample and the fact that longer proteins tend to have more peptide identifications than shorter proteins. Examples of the application of the NSAF approach to quantitative proteomic analysis include work on the expression changes of membrane proteins in S. cerevisiae (Zybailov et al., 2006) and on the human transcriptional regulatory complex, Mediator (Paoletti et al., 2006). We have also demonstrated that the NSAF approach generates datasets that have a high degree of statistical similarity to Affymetrix GeneChip™ datasets (Pavelka et al., 2008). This opens the door for NSAF based MudPIT analyses to carry our similar studies to those done over the years for GeneChip™ analyses and provides a foundation for bioinformatics analysis of such datasets using established GeneChip™ tools (Pavelka et al., 2008).

Biological Applications

Dynamics of Multiprotein Complexes
     Increasingly, our research is focusing on multiprotein complexes. Using affinity purification coupled with MudPIT and NSAF, we analyze complexes using different tagged subunits from the same multiprotein complex. This allows us to determine the relative abundance of particular proteins in a complex in a bait-dependent fashion and leads to the analysis of distinct forms of multiprotein complexes that can have important functional insights. In addition, current projects in the lab are using these approaches to determine the impact of different stimuli on multiprotein complexes.

Analysis of Transcriptional Regulatory Complexes
     After affinity purification to purify protein complexes from cells, we use the MudPIT and NSAF approach to quantitatively analyze multiprotein transcriptional regulatory complexes. The combination of these approaches provides not only a list of the proteins present but also the abundance of proteins present. This information can be used in a variety of ways. First, a quantitative proteomic analysis of a protein complex can be carried out to gain insight into the forms of the protein complexes and whether or not there are any abundant and poorly characterized new protein protein interactions.

     Examples of our use of this approach include a quantitative proteomic analysis of HeLa cell Mediator where four biological replicates of four different Mediator subunits were used to affinity purify the complex (Paoletti et al., 2006). The major finding from this study was Med10 (Nut2) and Med26 (Crsp70) have distinct kinase module content and roughly equivalent RNA Polymerase II protein content. Since Med26 has very low kinase module content but significant RNA Polymerase II protein content, Med26 purifications had the most transcriptional activity. In this study, we demonstrated that purifying Mediator through different subunits as tagged baits results in different forms of Mediator. We validated our proteomic and two stage statistical analysis with semi quantitative western blotting and a functional assay for RNA Polymerase II protein content (Paoletti et al., 2006). The technology described in this published work is an important foundation for our research where biological replicates of transcriptional regulatory complexes and subassemblies are analyzed in a bait dependent manner and the statistically significant differences in the complexes and subassemblies are determined.

     We have recently begun to apply this approach to RNA polymerase I, II, and III. During the course of this work, we determined the function of a poorly characterized but highly conserved protein, Rtr1, which was interacting with RNA polymerase II (Mosley, Pattenden, et al., 2009). Reciprocal affinity purifications with Rtr1 resulted in the affinity purification of all 12 subunits of RNA polymerase II. We then pursued the function of Rtr1 in the transcription cycle. We found that Rtr1 localized in coding regions between the peaks of Serine5-phosphorylation and Serine2-phosphorylation of the C-terminal domain of the largest subunit of RNA polymerase II, Rpb1. Deletion of Rtr1 resulted in an accumulation of the Serine5-phosphorylated form of Rpb1, a decrease in RNA polymerase II transcription, and termination defects. We further demonstrated that Rtr1 is a Serine 5 phosphatase of Rpb1 C-terminal domain (Mosley, Pattenden, et al., 2009). We are now carrying out additional studies to further characterize the function of Rtr1 in transcription.

Probabilistic Assembly of Protein Interaction Networks
     We have a growing interest in protein interaction network analyses. As a result of ongoing collaborations with other principal investigators at the Stowers Institute, we analyze a large amount of diverse affinity purifications from organisms like S. cerevisiae and human tissue culture. We used a portion of this data to develop a novel approach for assembling probabilistic local protein interaction networks using vector algebra and statistical methods, and applied this to the human Tip49a/Tip49b protein interaction network (Sardiu et al., 2008). We defined four protein complexes, URI/Prefoldin, hINO80, SRCAP, and TRRAP/TIP60 and we identified new components of these complexes. Most importantly, we determined the probabilities of protein-protein interactions within and between complexes. We used NSAF values to determine the probability of each protein protein interaction in the dataset. In a limited follow up analysis, higher probabilities corresponded to positive coIPs and low probabilities corresponded to negative coIPs (Sardiu et al., 2008). These results raise the intriguing possibility that the probabilities that are calculated from this technology may provide insight into the architectural organization of a protein complex. We have further analyzed the Tip49a/Tip49b dataset to evaluate different clustering algorithms to gain insight into the potential value of different clustering approaches for future computational assembly of unknown protein complexes (Sardiu et al., 2009). We are currently developing a large dataset protein protein interactions with a large number of affinity purifications of proteins involved in transcription. Future studies will be to assemble and analyze these datasets into probabilistic protein interaction networks.

Academic Appointment: Associate Professor, Department of Pathology & Laboratory Medicine, The University of Kansas School of Medicine


Selected publications

Sardiu ME, Florens L, Washburn MP.
Evaluation of clustering algorithms for protein complex and protein interaction network assembly. J Proteome Res. 2009;8:2944-2952. Abstract

Mosley AL, Pattenden SG, Carey M, Venkatesh S, Gilmore JM, Florens L, Workman JL, Washburn MP. Rtr1 is a CTD phosphatase that regulates RNA polymerase II during the transition from serine 5 to serine 2 phosphorylation. Mol Cell. 2009;34:168-178. Abstract

Shi M, Vivian CJ, Lee KJ, Ge C, Morotomi-Yano K, Manzl C, Bock F, Sato S, Tomomori-Sato C, Zhu R, Haug JS, Swanson SK, Washburn MP, Chen DJ, Chen BP, Villunger A, Florens L, Du C. DNA-PKcs-PIDDosome: a nuclear caspase-2-activating complex with role in G2/M checkpoint maintenance. Cell. 2009;136:508-520. Abstract

Mosley AL, Florens L, Wen Z, Washburn MP. A label free quantitative proteomic analysis of the Saccharomyces cerevisiae nucleus. J Proteomics. 2009;72:110-120. Abstract

Lin CH, Li B, Swanson S, Zhang Y, Florens L, Washburn MP, Abmayr SM, Workman JL. Heterochromatin Protein 1a stimulates histone H3 lysine 36 demethylation by the DrosophilaKDM4A demethylase. Mol Cell. 2008;32:696-706. Abstract

Black JC, Mosley A, Kitada T, Washburn M, Carey M. The SIRT2 Deacetylase Regulates Autoacetylastion of p300. Mol Cell. 2008;32:449-455. Abstract

Yao T, Song L, Jin J, Cai Y, Takahashi H, Swanson SK, Washburn MP, Florens L, Conaway RC, Cohen RE, Conaway JW. Distinct modes of regulation of the Uch37 deubiquitinating enzyme in the proteasome and in the Ino80 chromatin-remodeling complex. Mol Cell. 2008;31:909-917. Abstract

Suganuma T, Gutierrez JL, Li B, Florens L, Swanson SK, Washburn MP, Abmayr SM, Workman JL. ATAC is a double histone acetyltransferase complex that stimulates nucleosome sliding. Nat Struct Mol Biol. 2008;15:364-372. Abstract

Pavelka N, Fournier ML, Swanson SK, Pelizzola M, Ricciardi-Castagnoli P, Florens L, Washburn MP. Statistical Similarities between Transcriptomics and Quantitative Shotgun Proteomics Data. Mol Cell Proteomics. 2008; 7(4): 631-644. Abstract

Sardiu ME, Cai Y, Jin J, Swanson SK, Conaway RC, Conaway JW, Florens L, Washburn MP. Probabilistic assembly of human protein interaction networks from label-free quantitative proteomics. Proc Natl Acad Sci U S A. 2008;105:1454-1459. Abstract

Liu WL, Coleman RA, Grob P, King DS, Florens L, Washburn MP, Geles KG, Yang JL, Ramey V, Nogales E, Tjian R. Structural Changes in TAF4b-TFIID Correlate with Promoter Selectivity. Mol Cell. 2008;29:81-91. Abstract

Xiang Y, Takeo S, Florens L, Hughes SE, Huo LJ, Gilliland WD, Swanson SK, Teeter K, Schwartz JW, Washburn MP, Jaspersen SL, Hawley RS. The inhibition of polo kinase by matrimony maintains G2 arrest in the meiotic cell cycle. PLoS Biol. 2007;5:e323. Abstract

Lee JS, Shukla A, Schneider J, Swanson SK, Washburn MP, Florens L, Bhaumik SR, Shilatifard A. Histone crosstalk between H2B monoubiquitination and H3 methylation mediated by COMPASS. Cell. 2007;131:1084-1096. Abstract

Cai Y, Jin J, Yao T, Gottschalk AJ, Swanson SK, Wu S, Shi Y, Washburn MP, Florens L, Conaway RC, Conaway JW. YY1 functions with INO80 to activate transcription. Nat Struct Mol Biol. 2007;14:872-874. Abstract

Fournier ML, Gilmore JM, Martin-Brown SA, Washburn MP.
Multidimensional separations-based shotgun proteomics. Chem Rev. 2007;107:3654-3686. Abstract

Hrecka K, Gierszewska M, Srivastava S, Kozaczkiewicz L, Swanson SK, Florens L, Washburn MP, Skowronski J. Lentiviral Vpr usurps Cul4-DDB1[VprBP] E3 ubiquitin ligase to modulate cell cycle. Proc Natl Acad Sci U S A. 2007;104:11778-11783. Abstract

Camahort R, Li B, Florens L, Swanson SK, Washburn MP, Gerton JL. Scm3 is essential to recruit the histone h3 variant cse4 to centromeres and to maintain a functional kinetochore. Mol Cell. 2007;26:853-865. Abstract

Litovchick L, Sadasivam S, Florens L, Zhu X, Swanson SK, Velmurugan S, Chen R, Washburn MP, Liu XS, DeCaprio JA. Evolutionarily conserved multisubunit RBL2/p130 and E2F4 protein complex represses human cell cycle-dependent genes in quiescence. Mol Cell. 2007;26:539-551. Abstract

Zybailov BL, Florens L, Washburn MP. Quantitative shotgun proteomics using a protease with broad specificity and normalized spectral abundance factors. Mol Biosyst. 2007;3:354-360. Abstract

Paoletti AC, Parmely TJ, Tomomori-Sato C, Sato S, Zhu D, Conaway RC, Conaway JW, Florens L, Washburn MP. Quantitative proteomic analysis of distinct mammalian Mediator complexes using normalized spectral abundance factors. Proc Natl Acad Sci U S A. 2006;103:18928-18933. Abstract

Florens L, Carozza MJ, Swanson SK, Fournier M, Coleman MK, Workman JL, Washburn MP. Analyzing Chromatin Remodeling Complexes Using Shotgun Proteomics and Normalized Spectral Abundance Factors. Methods. 2006;40:303-311. Abstract

Zybailov B, Mosley AL, Sardiu ME, Coleman MK, Florens L, Washburn MP. Statistical analysis of membrane proteome expression changes in Saccharomyces cerevisiae. J Proteome Res. 2006;5:2339-2347. Abstract

Yao T, Song L, Xu W, Demartino GN, Florens L, Swanson SK, Washburn MP, Conaway RC, Conaway JW, Cohen RE. Proteasome recruitment and activation of the Uch37 deubiquitinating enzyme by Adrm1. Nat Cell Biol. 2006;8:994-1002. Abstract

Florens L, Washburn MP. Proteomic Analysis by Multidimensional Protein Identification Technology. Methods in Molecular Biology: New and Emerging Proteomics Techniques. Totowa, NJ: Humana Press Inc.; 2006;328:159-175.

Carrozza MJ, Li B, Florens L, Suganuma T, Swanson SK, Lee KK, Shia WJ, Anderson S, Yates J, Washburn MP, Workman JL. Histone H3 Methylation by Set2 Directs Deacetylation of Coding Regions by Rpd3S to Suppress Spurious Intragenic Transcription. Cell. 2005;123:581-592. Abstract

Prochasson P, Florens L, Swanson SK, Washburn MP, Workman JL. The HIR corepressor complex binds to nucleosomes generating a distinct protein/DNA complex resistant to remodeling by SWI/SNF. Genes Dev. 2005;19:2534-2539. Abstract

Zybailov B, Coleman MK, Florens L, Washburn MP. Correlation of relative abundance ratios derived from peptide ion chromatograms and spectrum counting for quantitative proteomic analysis using stable isotope labeling. Anal Chem. 2005;77:6218-6224. Abstract

Schneider J, Wood A, Lee JS, Schuster R, Dueker J, Maguire C, Swanson SK, Florens L, Washburn MP, Shilatifard A. Molecular regulation of histone H3 trimethylation by COMPASS and the regulation of gene expression. Mol Cell. 2005;19:849-856. Abstract

Swanson SK, Washburn MP. The continuing evolution of shotgun proteomics. Drug Discov Today. 2005;10:719-725. Abstract.

Kusch T, Florens L, Macdonald WH, Swanson SK, Glaser RL, Yates Iii JR, Abmayr SM, Washburn MP, Workman JL. Acetylation by Tip60 Is Required for Selective Histone Variant Exchange at DNA Lesions. Science. 2004;306:2084-2087. Abstract.

Sato S, Tomomori-Sato C, Parmely TJ, Florens L, Zybailov B, Swanson SK, Banks CA, Jin J, Cai Y, Washburn MP, Conaway JW, Conaway RC. A set of consensus Mammalian mediator subunits identified by multidimensional protein identification technology. Mol Cell. 2004;14:685-691. Abstract.

Washburn MP, Koller A, Oshiro G, Ulaszek RR, Plouffe D, Deciu C, Winzeler E, Yates JR III. Protein pathway and complex clustering of correlated mRNA and protein expression analyses in Saccharomyces cerevisiae. Proc Natl Acad Sci USA. 2003;100:3107-3112. Abstract.

Florens L, Washburn MP, Raine JD, Anthony RM, Grainger M, Haynes JD, Moch JK, Muster N, Sacci JB, Tabb DL, Witney AA, Wolters D, Wu Y, Gardner MJ, Holder AA, Sinden RE, Yates, JR III, Carucci DJ. A proteomic view of the Plasmodium falciparum life cycle. Nature. 2002;419:520-526. Abstract.

Washburn MP, Ulaszek R, Deciu C, Schieltz DM, Yates JR III. Analysis of quantitative proteomic data generated via multi-dimensional protein identification technology. Anal Chem. 2002;74:1650-1657. Abstract.

Washburn MP, Wolters D, Yates JR III. Large-scale analysis of the yeast proteome via multidimensional protein identification technology. Nat Biotech. 2001;19:242-247. Abstract.

Wolters D, Washburn MP, Yates JR III. An automated multidimensional protein identification technology for shotgun proteomics. Anal Chem. 2001;73:5683-5690. Abstract.


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